Masked facial region recognition using human pose estimation and broad learning system

Hongli Xiao, Bingshu Wang, Jiangbin Zheng, Jin Fang, Zhulin Liu, C. L. P. Chen
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Abstract

COVID-19 and its variants have been posing a large risk to people around the world since the outbreak of the disease. Many techniques like AI are explored to help combat epidemics. People are required or forced to wear a mask to fight against COVID-19 epidemics worldwide. It brings new challenges to the task of masked facial region recognition. When facial regions are occluded by masks, it will result in some failures of face detection algorithms. In this paper, we propose a method to recognize masked faces. It mainly includes three parts. Firstly, the human pose is estimated to produce a series of key points. It is implemented by OpenPose. Secondly, a key-points location strategy is designed to capture the masked facial regions. It can locate the positions of faces accurately. Thirdly, the broad learning system, which is also an incremental learning algorithm, is employed to recognize the classes of candidate regions. Experiments conducted on some datasets shed light on the effectiveness of the proposed method.
基于人体姿态估计和广义学习系统的人脸区域识别
自疫情爆发以来,COVID-19及其变体一直对世界各地的人们构成巨大风险。人工智能等许多技术被用来帮助对抗流行病。在全球范围内,人们被要求或被迫佩戴口罩,以应对新冠肺炎疫情。这给蒙面区域识别带来了新的挑战。当人脸区域被遮挡时,人脸检测算法会出现一些故障。本文提出了一种识别被遮挡人脸的方法。主要包括三个部分。首先,对人体姿态进行估计,生成一系列关键点。它是由OpenPose实现的。其次,设计关键点定位策略捕获被遮挡的面部区域;它可以准确地定位人脸的位置。第三,采用广义学习系统(广义学习系统也是一种增量学习算法)识别候选区域的类别。在一些数据集上进行的实验表明了所提出方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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